AI RESEARCH
DRIFT: Transferring Reasoning Priors for Efficient MLLM Fine-Tuning
arXiv CS.CV
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ArXi:2510.15050v2 Announce Type: replace Multimodal large language models (MLLMs) have made rapid progress, yet their reasoning ability often lags behind strong text-only LLMs. Bridging this gap typically requires large-scale multimodal reasoning data or reinforcement learning, incurring substantial cost. An appealing alternative is parameter-space model merging between reasoning-enhanced LLMs and MLLMs, but we show that naive merging is fragile: its effectiveness varies widely across model families and can significantly degrade performance (e.g., for Qwen-based MLLMs.